Fast committee learning: Preliminary results

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Fast committee learning: Preliminary results

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Fast committee learning can, to some extent, achieve the generalisation advantages of a committee of neural networks, without the need for independent learning of the committee members. This is achieved by selecting committee members from time-slices of the learning trajectory of one neural network.

Inspec keywords: neural nets; learning (artificial intelligence); generalisation (artificial intelligence)

Other keywords: neural network; fast committee learning; generalisation

Subjects: Neural nets (theory)

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